Iterative Misclassification Error Training (IMET): An Optimized Neural Network Training Technique for Image Classification
Journal:
arXiv
Published Date:
Jul 1, 2025
Abstract
Deep learning models have proven to be effective on medical datasets for
accurate diagnostic predictions from images. However, medical datasets often
contain noisy, mislabeled, or poorly generalizable images, particularly for
edge cases and anomalous outcomes. Additionally, high quality datasets are
often small in sample size that can result in overfitting, where models
memorize noise rather than learn generalizable patterns. This in particular,
could pose serious risks in medical diagnostics where the risk associated with
mis-classification can impact human life. Several data-efficient training
strategies have emerged to address these constraints. In particular, coreset
selection identifies compact subsets of the most representative samples,
enabling training that approximates full-dataset performance while reducing
computational overhead. On the other hand, curriculum learning relies on
gradually increasing training difficulty and accelerating convergence. However,
developing a generalizable difficulty ranking mechanism that works across
diverse domains, datasets, and models while reducing the computational tasks
and remains challenging. In this paper, we introduce Iterative
Misclassification Error Training (IMET), a novel framework inspired by
curriculum learning and coreset selection. The IMET approach is aimed to
identify misclassified samples in order to streamline the training process,
while prioritizing the model's attention to edge case senarious and rare
outcomes. The paper evaluates IMET's performance on benchmark medical image
classification datasets against state-of-the-art ResNet architectures. The
results demonstrating IMET's potential for enhancing model robustness and
accuracy in medical image analysis are also presented in the paper.